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Multicriteria neural network design in the speech-based emotion recognition problem

机译:基于语音的情绪识别问题中的多准则神经网络设计

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In this paper we introduce the two-criterion optimization model to design multilayer perceptrons taking into account two objectives, which are the classification accuracy and computational complexity. Using this technique, it is possible to simplify the structure of neural network classifiers and at the same time to keep high classification accuracy. The main benefits of the approach proposed are related to the automatic choice of activation functions, the possibility of generating the ensemble of classifiers, and the embedded feature selection procedure. The cooperative multi-objective genetic algorithm is used as an optimizer to determine the Pareto set approximation in the two-criterion problem. The effectiveness of this approach is investigated on the speech-based emotion recognition problem. According to the results obtained, the usage of the proposed technique might lead to the generation of classifiers comprised by fewer neurons in the input and hidden layers, in contrast to conventional models, and to an increase in the emotion recognition accuracy by up to a 4.25% relative improvement due to the application of the ensemble of classifiers.
机译:在本文中,我们引入了两个标准的优化模型来设计多层感知器,同时考虑了分类精度和计算复杂度这两个目标。使用该技术,可以简化神经网络分类器的结构,同时保持较高的分类精度。所提出的方法的主要优点涉及激活函数的自动选择,生成分类器集合的可能性以及嵌入式特征选择过程。协同多目标遗传算法被用作优化器来确定两准则问题中的帕累托集近似。在基于语音的情感识别问题上研究了这种方法的有效性。根据获得的结果,与传统模型相比,所提出的技术的使用可能会导致由输入层和隐藏层中较少的神经元组成的分类器的生成,并使情感识别精度提高多达4.25%由于应用了分类器集合,相对改进百分比为。

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